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Given a dataframe with the following data, how can I use python and pandas to extract the last 3 occurrences of a given event 'Y'?

         Date Customer Event
0    1/1/2013      Tom     N
1    1/3/2013      Tom     Y
2    1/5/2013    Harry     Y
3    1/7/2013     Dick     N
4    1/9/2013      Tom     Y
5   1/11/2013      Tom     Y
6   1/13/2013    Harry     N
7   1/15/2013     Dick     Y
8   1/17/2013      Tom     Y
9   1/19/2013      Tom     N
10  1/21/2013    Harry     Y
11  1/23/2013     Dick     Y
12  1/25/2013      Tom     N
14  1/29/2013    Harry     Y
15  1/31/2013     Dick     N
16   2/2/2013      Tom     Y
17   2/4/2013      Tom     Y
18   2/6/2013    Harry     N
19   2/8/2013     Dick     Y
20  2/10/2013      Tom     Y
21  2/12/2013      Tom     N

Expected results should be

        Start           End
Tom     2/2/2013    2/10/2013
Harry   1/5/2013    1/29/2013
Dick    1/15/2013   2/8/2013
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what have you tried? mattgemmell.com/2008/12/08/what-have-you-tried –  Amine Hajyoussef Mar 1 '13 at 5:39
    
what are start and end? they don't seem to first and last occurrences. –  Andy Hayden Mar 1 '13 at 10:55
    
Sorry that should have been - Given a dataframe with the following data, how can I use python and pandas to extract the date range for last 3 occurrences of a given event 'Y', per customer ? –  Shawnzoom Mar 1 '13 at 14:38

2 Answers 2

If the DataFrame is named df, you could try:

    df[df['Event'] == 'Y'][-3:]
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1  
You can also use .tail(3) :) –  Andy Hayden Mar 1 '13 at 16:02

Anupan, thanks for you tip. Your suggestion returns the last 3 events where Event == 'Y' regardless of customer

df[df['Event'] == 'Y'][-3:]
Out[133]: 
    Date         Customer Event
17  2/4/2013     Tom      Y
19  2/8/2013     Dick     Y
20  2/10/2013    Tom      Y

I needed the date range for the last 3 'Y' events per customer. I'm sure there is a more efficient way but the following works.

df.ix[df.Customer == 'Tom'].ix[df.ix[df.Customer == 'Tom'].Event == 'Y'][-3:]
Out[134]: 
     Date          Customer Event
16   2/2/2013      Tom      Y
17   2/4/2013      Tom      Y
20  2/10/2013      Tom      Y


df.ix[df.Customer == 'Dick'].ix[df.ix[df.Customer == 'Dick'].Event == 'Y'][-3:]
Out[135]: 
     Date         Customer Event
7    1/15/2013    Dick     Y
11   1/23/2013    Dick     Y
19   2/8/2013     Dick     Y

etc, etc

Thanks

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